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首页> 外文期刊>Transactions of the Institute of Measurement and Control >Maximum power point tracking and power flow management of hybrid renewable energy system with partial shading capability: A hybrid technique
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Maximum power point tracking and power flow management of hybrid renewable energy system with partial shading capability: A hybrid technique

机译:具有部分遮阳功能的混合再生能源系统的最大功率点跟踪和电流管理:混合技术

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A grid connected hybrid energy system combining wind turbine (WT) and photovoltaic (PV) array generating system with energy storage system to supply continuous power to the load using hybrid technique is exhibited in this dissertation. The proposed hybrid technique is the joint execution of both the binary chaotic crow search optimizer (BCCSO) with grey wolf optimizer and random forest algorithm (GWORFA) and hence it is named as BCCSO-GWORFA technique. The main aim of the proposal is to optimally track the maximum power point tracking (MPPT) and to maintain the power flow of the grid connected HRES. Here, the BCCSO-based MPPT procedure optimizes the exact duty cycles required for the DC-DC converter of the PV under partial shading conditions and WT system under variable speed conditions based on the voltage and current parameters. On the other hand, the grey wolf optimizer (GWO) learning procedure-based random forest algorithm (RFA) predicts the control signals of the voltage source inverter (VSI) based on the active and reactive power variations available in the load side. To predict the control parameters, the proposed technique considers power balance constraints like RES accessibility, storage element state of charge, and load side power demand. The proposed strategy is implemented in MATLAB/Simulink working platform. The performance of the HRES is assessed by utilizing the comparison analysis with the existing techniques. The comparison results invariably prove the proposed hybrid technique effectiveness and confirm its potential to solve the related issues with efficiency of 99.5%.
机译:本文展示了一种具有能量存储系统的风力涡轮机(WT)和光伏(PV)阵列产生系统的电网连接混合能量系统,以使用混合技术向负载提供连续电力。该提议的混合技术是与灰狼优化器和随机森林算法(GWORFA)的二元混沌乌鸦搜索优化器(BCCSO)的联合执行,因此它被命名为BCCSO-GWORFA技术。该提议的主要目的是最佳地跟踪最大功率点跟踪(MPPT)并保持电网连接的HRE的电流。这里,基于BCCSO的MPPT过程优化了基于电压和电流参数的可变速度条件下的局部阴影条件和WT系统下PV DC-DC转换器所需的精确占空比。另一方面,基于灰狼优化器(GWO)学习的随机林算法(RFA)基于负载侧可用的有源和无功功率变化来预测电压源逆变器(VSI)的控制信号。为了预测控制参数,所提出的技术考虑功率平衡约束,如RES可访问性,存储元件的充电状态和负载侧电力需求。所提出的策略是在Matlab / Simulink工作平台中实现的。通过利用现有技术的比较分析来评估HRES的性能。比较结果总是证明了拟议的混合技术有效性,并确认其潜力以99.5%的效率解决相关问题。

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